Deep learning for laboratory earthquake prediction and autoregressive forecasting of fault zone stress
Laura Laurenti, Elisa Tinti, Fabio Galasso, Luca Franco, Chris Marone

TL;DR
This paper demonstrates that deep learning models, including LSTM and CNN, can predict laboratory earthquakes and fault stress with high fidelity, and introduces autoregressive methods for forecasting fault evolution over time.
Contribution
It generalizes deep learning approaches for labquake prediction, introduces autoregressive forecasting frameworks, and shows improved accuracy over existing methods.
Findings
DL models accurately predict labquakes and fault stress.
AR methods enable forecasting of fault stress evolution.
TTeF prediction is reliable across seismic cycles.
Abstract
Earthquake forecasting and prediction have long and in some cases sordid histories but recent work has rekindled interest based on advances in early warning, hazard assessment for induced seismicity and successful prediction of laboratory earthquakes. In the lab, frictional stick-slip events provide an analog for earthquakes and the seismic cycle. Labquakes are ideal targets for machine learning (ML) because they can be produced in long sequences under controlled conditions. Recent works show that ML can predict several aspects of labquakes using fault zone acoustic emissions. Here, we generalize these results and explore deep learning (DL) methods for labquake prediction and autoregressive (AR) forecasting. DL improves existing ML methods of labquake prediction. AR methods allow forecasting at future horizons via iterative predictions. We demonstrate that DL models based on Long-Short…
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Taxonomy
MethodsMulti-Head Attention · Attention Is All You Need · Linear Layer · Position-Wise Feed-Forward Layer · Dense Connections · Byte Pair Encoding · Sigmoid Activation · Label Smoothing · Absolute Position Encodings · Layer Normalization
